A unified Benchmark for Multi-Frame Image Restoration under Severe Refractive Warping

📅 2026-05-06
📈 Citations: 0
Influential: 0
📄 PDF

career value

220K/year
📝 Abstract
Video sequence capturing through refractive dynamic media, such as a turbulent air or water surface, often suffer from severe geometric distortions and temporal instability. While recent advances address mild atmospheric turbulence, no existing benchmarks systematically evaluate restoration methods under strong and highly nonuniform refractive conditions. We present a comprehensive benchmark for geometric distortion removal in video, covering a range from turbulence-like mild warping to strong discontinuous refractive deformations. The benchmark includes both laboratory-captured real data and synthetic sequences generated for static scenes via physics-based light refraction modeling across four distortion levels and multiple surface wave types. We evaluate a spectrum of methods from simple baselines and classical registration algorithms to advanced learning-based approaches including DATUM and our proposed diffusion based V-cache for high and extreme distortions regimes. Evaluation uses both pixel-level (PSNR, SSIM), and perceptual (LPIPS, DINO, CLIP) metrics providing the first large scale analysis of geometric distortion removal. Our benchmark establishes a new foundation for developing and evaluating algorithms capable of reconstructing video from highly distorted optical environments. Our code and datasets are available at https://github.com/iafoss/refractive-mfir-benchmark.
Problem

Research questions and friction points this paper is trying to address.

refractive warping
geometric distortion
multi-frame image restoration
video stabilization
turbulence
Innovation

Methods, ideas, or system contributions that make the work stand out.

refractive distortion
multi-frame image restoration
diffusion-based V-cache
physics-based synthesis
video benchmark
🔎 Similar Papers
No similar papers found.
M
Maxim V. Shugaev
AeroVironment, Inc.
M
Md Reshad Ul Hoque
AeroVironment, Inc.
B
Bridget Kennedy
AeroVironment, Inc.
J
Joseph T. Riley
AeroVironment, Inc.
F
Fiona Hwang
AeroVironment, Inc.
J
Justin Hagen
U. S. Naval Research Laboratory, George Mason University
H
Harvir Ghuman
U. S. Naval Research Laboratory
E
Ethan Garcia-O'Donnell
U. S. Naval Research Laboratory
S
Syed Noor Qadri
U. S. Naval Research Laboratory
F
Freddie Santiago
U. S. Naval Research Laboratory
Mun Wai Lee
Mun Wai Lee
Unknown affiliation